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UGSD: User Generated Sentiment Dictionaries from Online Customer Reviews

机译:UGSD:用户生成的情绪词典来自在线客户评论

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Customer reviews on platforms such as TripAdvisor and Amazon provide rich information about the ways that people convey sentiment on certain domains. Given these kinds of user reviews, this paper proposes UGSD, a representation learning framework for constructing domain-specific sentiment dictionaries from online customer reviews, in which we leverage the relationship between user-generated reviews and the ratings of the reviews to associate the reviewer sentiment with certain entities. The proposed framework has the following three main advantages. First, no additional annotations of words or external dictionaries are needed for the proposed framework; the only resources needed are the review texts and entity ratings. Second, the framework is applicable across a variety of user-generated content from different domains to construct domain-specific sentiment dictionaries. Finally, each word in the constructed dictionary is associated with a low-dimensional dense representation and a degree of relatedness to a certain rating, which enable us to obtain more fine-grained dictionaries and enhance the application scalability of the constructed dictionaries as the word representations can be adopted for various tasks or applications, such as entity ranking and dictionary expansion. The experimental results on three real-world datasets show that the framework is effective in constructing high-quality domain-specific sentiment dictionaries from customer reviews.
机译:客户评论TripAdvisor和Amazon等平台提供有关人们在某些领域传达情绪的方式的丰富信息。鉴于这些类型的用户评论,提出了UGSD,用于构建来自在线客户评论的域特定情绪词典的代表学习框架,其中我们利用了用户生成的审查和评论评级之间的关系,以使评审员情绪联合起来有某些实体。拟议的框架具有以下三个主要优点。首先,拟议的框架不需要额外的单词或外部词典注释;所需的唯一资源是审查文本和实体评级。其次,框架适用于来自不同域的各种用户生成的内容,以构建特定于域的情绪词典。最后,构造字典中的每个单词与对某个评级的低维密度表示和相关性相关联,这使我们能够获得更细粒度的字典并增强构造词典的应用程序可伸缩性作为单词表示可以用于各种任务或应用程序,例如实体排名和词典扩张。在三次真实世界数据集上的实验结果表明,该框架有效地构建客户评论的高质量域特定情绪词典。

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